DocumentCode
2951770
Title
Multi-Instance Learning with an Extended Kernel Density Estimation for Object Categorization
Author
Du, Ruo ; Wu, Qiang ; He, Xiangjian ; Yang, Jie
Author_Institution
Univ. of Technol., Sydney, NSW, Australia
fYear
2012
fDate
9-13 July 2012
Firstpage
477
Lastpage
482
Abstract
Multi-instance learning (MIL) is a variational supervised learning. Instead of getting a set of instances that are labeled, the learner receives a set of bags that are labeled. Each bag contains many instances. In this paper, we present a novel MIL algorithm that can efficiently learn classifiers in a large instance space. We achieve this by estimating instance distribution using a proposed extended kernel density estimation (eKDE) which is an alternative to previous diverse density estimation (DDE). A fast method is devised to approximately locate the multiple modes of eKDE. Comparing to DDE, eKDE is more efficient and robust to the labeling noise (the mislabeled training data). We compare our approach with other state-of-the-art MIL methods in object categorization on the popular Caltech-4 and SIVAL datasets, the results illustrate that our approach provides superior performance.
Keywords
learning (artificial intelligence); pattern classification; variational techniques; Caltech-4 datasets; DDE; MIL algorithm; SIVAL datasets; diverse density estimation; eKDE; extended kernel density estimation; labeling noise; multi-instance learning; object categorization; variational supervised learning; Bismuth; Estimation; Kernel; Labeling; Noise; Support vector machines; Training; extended kernel density estimation; mean shift; multi-instance learning; object categorization;
fLanguage
English
Publisher
ieee
Conference_Titel
Multimedia and Expo Workshops (ICMEW), 2012 IEEE International Conference on
Conference_Location
Melbourne, VIC
Print_ISBN
978-1-4673-2027-6
Type
conf
DOI
10.1109/ICMEW.2012.89
Filename
6266430
Link To Document